云计算
太阳辐照度
卫星
辐照度
辐射传输
遥感
计算机科学
气象学
财产(哲学)
环境科学
物理
地理
光学
天文
认识论
操作系统
哲学
作者
Grant Buster,Mike Bannister,Aron Habte,Dylan Hettinger,Galen Maclaurin,Michael Rossol,Manajit Sengupta,Yu Xie
标识
DOI:10.1109/pvsc43889.2021.9519065
摘要
With over 20 years of high-resolution surface irradiance data covering most of the western hemisphere, the National Solar Radiation Database (NSRDB) is a vital public data asset. The NSRDB uses a two-step Physical Solar Model (PSM) that explicitly considers the effects of clouds and other atmospheric variables on radiative transfer. High-quality physical and optical cloud properties derived from satellite imagery are perhaps the most important data inputs to the PSM, representing the greatest source of radiation attenuation and scattering. However, traditional methods for cloud property retrieval have their own limitations and are unable to accurately predict cloud properties outside of nominal conditions. We introduce a physics-guided neural network that can accurately predict cloud properties when traditional methods fail or are inaccurate. Using this framework, we show reductions in relative Root Mean Square Error (RMSE) for Global Horizontal Irradiance (GHI) up to 13 percentage points for timesteps that previously had missing or low-quality cloud property data. We expect that this methodology will be effective in improving the quality of cloud property and solar irradiance data in the NSRDB.
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